Computer Assisted Annotation of Tension Development in TED Talks through Crowdsourcing

Seungwon Yoon, Wonsuk Yang, Jong C. Park
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Abstract

We propose a method of machine-assisted annotation for the identification of tension development, annotating whether the tension is increasing, decreasing, or staying unchanged. We use a neural network based prediction model, whose predicted results are given to the annotators as initial values for the options that they are asked to choose. By presenting such initial values to the annotators, the annotation task becomes an evaluation task where the annotators inspect whether or not the predicted results are correct. To demonstrate the effectiveness of our method, we performed the annotation task in both in-house and crowdsourced environments. For the crowdsourced environment, we compared the annotation results with and without our method of machine-assisted annotation. We find that the results with our method showed a higher agreement to the gold standard than those without, though our method had little effect at reducing the time for annotation. Our codes for the experiment are made publicly available.
通过众包对TED演讲中紧张发展的计算机辅助注释
我们提出了一种机器辅助标注的方法来识别张力发展,标注张力是增加、减少还是保持不变。我们使用基于神经网络的预测模型,其预测结果作为要求注释者选择的选项的初始值提供给注释者。通过向注释器提供这些初始值,注释任务变成了一个评估任务,注释器检查预测结果是否正确。为了证明我们方法的有效性,我们在内部和众包环境中执行了注释任务。对于众包环境,我们比较了使用机器辅助标注方法和不使用机器辅助标注方法的标注结果。我们发现使用我们的方法的结果比没有使用我们的方法的结果更符合金标准,尽管我们的方法在减少注释时间方面收效甚微。我们的实验代码是公开的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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